Multiple groups of gradient particle swarm optimization and its application in optimal operation of reservoir

Yangyang Jia, Jianqun Wang, Qingyuan Xiao
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引用次数: 2

Abstract

In this paper, the particle swarm optimization algorithm (PSO) for reservoir optimal operation is studied. A new algorithm which is suitable for reservoir optimal operation called multiple groups of gradient particle swarm optimization algorithm (MGPSO) is proposed to avoid the shortcomings of PSO including premature convergence, poor search accuracy and easily falling into local optimal solution. The gradient searching strategy is introduced to improve the search accuracy of local optima. Grouping and randomly updating strategy are used to improve the searching ability of global optima. Simulation experiments and the example of reservoir optimal operation show that the new algorithm MGPSO obviously outperforms the standard PSO and shuffled frog leaping particle swarm optimization (SFLPSO), and is effective in solving the optimal operation of hydropower station reservoir.
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多组梯度粒子群优化及其在水库优化调度中的应用
本文研究了水库优化调度中的粒子群优化算法。针对多组梯度粒子群优化算法过早收敛、搜索精度差、易陷入局部最优解等缺点,提出了一种适用于水库优化调度的新算法——多组梯度粒子群优化算法。为了提高局部最优的搜索精度,引入了梯度搜索策略。采用分组和随机更新策略,提高了全局最优的搜索能力。仿真实验和水库优化调度实例表明,该算法明显优于标准粒子群算法和洗漱蛙跳粒子群算法(SFLPSO),能够有效地解决水电站水库优化调度问题。
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